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Independent Component Analysis Based on Mutual Dependence Measures

机译:基于相互依赖措施的独立分量分析

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We apply both distance-based and kernel-based mutual dependence measures to independent component analysis (ICA), and generalize dCovICA to MDMICA, minimizing empirical dependence measures as an objective function in both deflation and parallel manners. Solving this minimization problem, we introduce Latin hypercube sampling (LHS), and a global optimization method, Bayesian optimization (BO) to improve the initialization of the Newton-type local optimization method. The performance of MDMICA is evaluated in various simulation studies and an image data example. When the ICA model is correct, MDMICA achieves competitive results compared to existing approaches. When the ICA model is misspecified, the estimated independent components are less mutually dependent than the observed components using MDMICA, while the estimated independent components are prone to be even more mutually dependent than the observed components using other approaches.
机译:我们将基于距离的和基于内核的相互依赖措施应用于独立的分量分析(ICA),并将DCoVica推广到MDMICA,以最小化和平行方式的目标函数最小化。解决这一最小化问题,我们介绍了拉丁超级采样(LHS),以及全球优化方法,贝叶斯优化(BO),以改善牛顿型局部优化方法的初始化。在各种仿真研究和图像数据示例中评估MDMICA的性能。当ICA模型正确时,MDMICA与现有方法相比,达到竞争力。当ICA模型被遗漏时,估计的独立组分比使用MDMICA的观察组件相互依赖,而估计的独立组分易于使用其他方法比观察到的组件更相互依赖。

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